{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [],
   "source": [
    "import pandas as pd\n",
    "housing_df = pd.read_csv('HousingData.csv')\n",
    "import matplotlib.pyplot as plt\n",
    "%matplotlib inline\n",
    "import seaborn as sns\n",
    "# Set up seaborn dark grid\n",
    "sns.set()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "x = housing_df['RM']\n",
    "y = housing_df['MEDV']\n",
    "plt.boxplot(x)\n",
    "plt.show()"
   ]
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.7.3"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 2
}
